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Model-based state-of-charge estimation approach of the Lithium-ion battery using an improved adaptive particle filter

机译:使用改进的自适应粒子过滤器的锂离子电池基于模型的充电状态估计方法

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Accurate state of charge (SoC) estimation is of great significance for a lithium-ion battery. This paper presents an adaptive particle filter (APF)-based SoC estimation algorithm for lithium-ion batteries in electric vehicles. Firstly, the lithium-ion battery is modeled using the resistance-capacitance network based one-state hysteresis equivalent circuit model and its parameters are determined by the particle swarm optimization method. Then, an improved adaptive particle filter has been proposed and applied to the battery SoC estimation. Finally, the two typical lithium-ion battery, LiFePO4 and NMC lithium-ion, have been used to verify the proposed SoC estimator.
机译:准确的充电状态(SOC)估计对于锂离子电池具有重要意义。本文介绍了电动汽车锂离子电池的自适应粒子滤波器(APF)SOC估计算法。首先,使用基于电阻电容网络的一态滞后等效电路模型建模锂离子电池,其参数由粒子群优化方法确定。然后,已经提出了一种改进的自适应粒子滤波器并将其应用于电池SOC估计。最后,已经使用了两个典型的锂离子电池,LiFePO4和NMC锂离子来验证所提出的SOC估计器。

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